论文标题

部分可观测时空混沌系统的无模型预测

Highly-Accurate Electricity Load Estimation via Knowledge Aggregation

论文作者

Ding, Yuting, Wu, Di, He, Yi, Luo, Xin, Deng, Song

论文摘要

中期和长期电力需求预测对于智能电网系统的计划和操作至关重要。主要在电力系统在放松管制环境中运行的国家。传统的预测模型无法纳入外部知识,而现代数据驱动的模型忽略了模型的解释,而负载系列可能会受到许多复杂因素的影响,因此很难应对高度不稳定和非线性的功率负载系列。为了解决预测问题,我们提出了一个基于域知识以及分解和合奏的想法的更准确的区域级负载预测模型。它的主要思想是三个方面的: 2)内核主成分分析(KPCA)用于提取天气和日历规则特征集的主要组件以实现降低数据维度。 3)基于域知识的各种模型的优势,并根据自回旋积分移动平均模型(ARIMA),支持向量回归(SVR)和极端梯度增强模型(XGBoost)提出了各种模型的优势。通过这样的设计,尽管具有高度不稳定的特性,但它可以准确地预测电力需求。我们将我们的方法与九种基准方法进行了比较,包括经典的统计模型以及基于机器学习的最先进模型,在四个中国城市的每月电力需求的实时序列上。实证研究表明,就准确性和预测偏差而言,提出的杂种模型优于所有竞争者。

Mid-term and long-term electric energy demand prediction is essential for the planning and operations of the smart grid system. Mainly in countries where the power system operates in a deregulated environment. Traditional forecasting models fail to incorporate external knowledge while modern data-driven ignore the interpretation of the model, and the load series can be influenced by many complex factors making it difficult to cope with the highly unstable and nonlinear power load series. To address the forecasting problem, we propose a more accurate district level load prediction model Based on domain knowledge and the idea of decomposition and ensemble. Its main idea is three-fold: a) According to the non-stationary characteristics of load time series with obvious cyclicality and periodicity, decompose into series with actual economic meaning and then carry out load analysis and forecast. 2) Kernel Principal Component Analysis(KPCA) is applied to extract the principal components of the weather and calendar rule feature sets to realize data dimensionality reduction. 3) Give full play to the advantages of various models based on the domain knowledge and propose a hybrid model(XASXG) based on Autoregressive Integrated Moving Average model(ARIMA), support vector regression(SVR) and Extreme gradient boosting model(XGBoost). With such designs, it accurately forecasts the electricity demand in spite of their highly unstable characteristic. We compared our method with nine benchmark methods, including classical statistical models as well as state-of-the-art models based on machine learning, on the real time series of monthly electricity demand in four Chinese cities. The empirical study shows that the proposed hybrid model is superior to all competitors in terms of accuracy and prediction bias.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源